Department of Clinical Pharmacology & Pharmacoepidemiology, Heidelberg University, Heidelberg, Baden-Württemberg, Germany
Institute of General Practice, Goethe University, Frankfurt am Main, Hessen, Germany
BMJ Open. 2021 Aug 4;11(8):e045572. doi: 10.1136/bmjopen-2020-045572.
To explore factors that potentially impact external validation performance while developing and validating a prognostic model for hospital admissions (HAs) in complex older general practice patients.
Using individual participant data from four cluster-randomised trials conducted in the Netherlands and Germany, we used logistic regression to develop a prognostic model to predict all-cause HAs within a 6-month follow-up period. A stratified intercept was used to account for heterogeneity in baseline risk between the studies. The model was validated both internally and by using internal-external cross-validation (IECV).
Prior HAs, physical components of the health-related quality of life comorbidity index, and medication-related variables were used in the final model. While achieving moderate discriminatory performance, internal bootstrap validation revealed a pronounced risk of overfitting. The results of the IECV, in which calibration was highly variable even after accounting for between-study heterogeneity, agreed with this finding. Heterogeneity was equally reflected in differing baseline risk, predictor effects and absolute risk predictions.
Predictor effect heterogeneity and differing baseline risk can explain the limited external performance of HA prediction models. With such drivers known, model adjustments in external validation settings (eg, intercept recalibration, complete updating) can be applied more purposefully.
PROSPERO id: CRD42018088129.
在为复杂老年全科患者制定和验证住院(HA)预后模型时,探讨可能影响外部验证性能的因素。
使用来自荷兰和德国四项集群随机试验的个体参与者数据,我们使用逻辑回归来开发预测模型,以预测 6 个月随访期内的全因 HA。使用分层截距来解释研究之间基线风险的异质性。该模型在内部和内部-外部交叉验证(IECV)中进行了验证。
先前的 HA、健康相关生活质量的物理成分共病指数和药物相关变量被用于最终模型。虽然实现了中等程度的区分性能,但内部引导验证显示出明显的过度拟合风险。IECV 的结果也同意这一发现,即使考虑到研究之间的异质性,校准也存在高度的可变性。异质性同样反映在不同的基线风险、预测因子效应和绝对风险预测中。
预测因子效应的异质性和不同的基线风险可以解释 HA 预测模型的外部性能有限。随着这些驱动因素的了解,可以更有针对性地在外部验证环境中调整模型(例如,重新校准截距,完全更新)。
PROSPERO 编号:CRD42018088129。